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首页> 外文期刊>EURASIP Journal on Audio, Speech, and Music Processing >Intra-frame cepstral sub-band weighting and histogram equalization for noise-robust speech recognition
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Intra-frame cepstral sub-band weighting and histogram equalization for noise-robust speech recognition

机译:帧内倒谱子带加权和直方图均衡,用于噪声鲁棒的语音识别

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摘要

In this paper, we propose a novel noise-robustness method known as weighted sub-band histogram equalization (WS-HEQ) to improve speech recognition accuracy in noise-corrupted environments. Considering the observations that high- and low-pass portions of the intra-frame cepstral features possess unequal importance for noise-corrupted speech recognition, WS-HEQ is intended to reduce the high-pass components of the cepstral features. Furthermore, we provide four types of WS-HEQ, which partially refers to the structure of spatial histogram equalization (S-HEQ). In the experiments conducted on the Aurora-2 noisy-digit database, the presented WS-HEQ yields significant recognition improvements relative to the Mel-scaled filter-bank cepstral coefficient (MFCC) baseline and to cepstral histogram normalization (CHN) in various noise-corrupted situations and exhibits a behavior superior to that of S-HEQ in most cases.
机译:在本文中,我们提出了一种被称为加权子带直方图均衡(WS-HEQ)的新颖的噪声鲁棒性方法,以提高在噪声损坏的环境中的语音识别精度。考虑到帧内倒谱特征的高通和低通部分对于受噪声破坏的语音识别具有同等重要的观察结果,WS-HEQ旨在减少倒谱特征的高通分量。此外,我们提供了四种类型的WS-HEQ,部分指的是空间直方图均衡化(S-HEQ)的结构。在Aurora-2噪声位数数据库上进行的实验中,相对于梅尔级滤波器组倒谱系数(MFCC)基线和各种噪声下的倒谱直方图归一化(CHN),提出的WS-HEQ产生了明显的识别改进。损坏的情况,并且在大多数情况下,其行为均优于S-HEQ。

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